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Hand-Eye Autonomous Delivery: Learning Humanoid Navigation, Locomotion and Reaching

5 August 2025
Sirui Chen
Yufei Ye
Zi-ang Cao
Jennifer Lew
Pei Xu
Chao Liu
ArXiv (abs)PDFHTMLGithub (867★)
Main:9 Pages
8 Figures
Bibliography:3 Pages
5 Tables
Appendix:4 Pages
Abstract

We propose Hand-Eye Autonomous Delivery (HEAD), a framework that learns navigation, locomotion, and reaching skills for humanoids, directly from human motion and vision perception data. We take a modular approach where the high-level planner commands the target position and orientation of the hands and eyes of the humanoid, delivered by the low-level policy that controls the whole-body movements. Specifically, the low-level whole-body controller learns to track the three points (eyes, left hand, and right hand) from existing large-scale human motion capture data while high-level policy learns from human data collected by Aria glasses. Our modular approach decouples the ego-centric vision perception from physical actions, promoting efficient learning and scalability to novel scenes. We evaluate our method both in simulation and in the real-world, demonstrating humanoid's capabilities to navigate and reach in complex environments designed for humans.

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